Multi-scale Local Network Structure Critically Impacts Epidemic Spread and Interventions
Omar Eldaghar, Michael W. Mahoney, David F. Gleich

TL;DR
This paper demonstrates that multi-scale local network structures significantly influence epidemic spread and intervention effectiveness, revealing that realistic interaction networks behave differently from common synthetic models, impacting mitigation strategies.
Contribution
It identifies the critical role of multi-scale local structures in epidemic dynamics, which are absent in standard models, and shows their impact on intervention outcomes and epidemic mitigation.
Findings
Epidemic spread is highly sensitive to multi-scale local network structures.
Realistic networks enable epidemic control even when simple models do not.
Multi-scale local structure arises from social processes like homophily and social influence.
Abstract
Network epidemic simulation holds the promise of enabling fine-grained understanding of epidemic behavior, beyond that which is possible with coarse-grained compartmental models. Key inputs to these epidemic simulations are the networks themselves. However, empirical measurements and samples of realistic interaction networks typically display properties that are challenging to capture with popular synthetic models of networks. Our empirical results show that epidemic spread behavior is very sensitive to a subtle but ubiquitous form of multi-scale local structure that is not present in common baseline models, including (but not limited to) uniform random graph models (Erdos-Renyi), random configuration models (Chung-Lu), etc. Such structure is not necessary to reproduce very simple network statistics, such as degree distributions or triangle closing probabilities. However, we show that…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Mental Health Research Topics
